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Towards an auto-tuning system design for optimal sparse compression format selection with user expertise

机译:朝向自动调整系统设计,以获得具有用户专业知识的最佳稀疏压缩格式选择

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Several applications in numerical scientific computing process sparse matrices with either a regular or irregular structure. The very large size of these matrices requires to use compressing formats and target parallel/distributed architectures in order to reduce both space complexity and processing time. The optimal compression format (OCF) of such matrices may in fact vary according to both the application context of the numerical method and the target hardware architecture. In this paper, we propose a design of a system that automatically selects the OCF according to the two above cited parameters. The expert system obtained from our model targets dynamic integration of the user expertise thus allowing better performances. The optimal format selection is based on the makespan criterion. As a first validation test of our system, we studied the representative case of Horner scheme in the context of data parallel programming model and multicore cluster. Our experiments focus on the four compression formats CSR, CSC, COO and ELLPACK and their complexities in a data parallel programming model context.
机译:数值科学计算过程中的几种应用,具有规则或不规则结构的稀疏矩阵。这些矩阵的非常大的尺寸需要使用压缩格式和目标并行/分布式架构,以减少空间复杂度和处理时间。事实上,这种矩阵的最佳压缩格式(OCF)可以根据数值方法的应用上下文和目标硬件架构而变化。在本文中,我们提出了一种系统的设计,该系统根据上述两个引用的参数自动选择OCF。从我们的模型中获得的专家系统目标是用户专业知识的动态集成,从而允许更好的表现。最佳格式选择基于MakeSpan标准。作为我们系统的第一个验证测试,我们研究了在数据并行编程模型和多核群集的上下文中的角色方案的代表性案例。我们的实验专注于四种压缩格式CSR,CSC,COO和ELLPACK及其在数据并行编程模型上下文中的复杂性。

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